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Interpretable and Explainable Predictive Machine Learning Models for Data-Driven Protein Engineering

David Medina-Ortiz, Ashkan Khalifeh, Hoda Anvari-Kazemabad,Mehdi D. Davari

Biotechnology Advances(2024)

Departamento de Ingeniería En Computación | Department of Bioorganic Chemistry

Cited 0|Views5
Abstract
Protein engineering through directed evolution and (semi)rational design has become a powerful approach for optimizing and enhancing proteins with desired properties. The integration of artificial intelligence methods has further accelerated protein engineering process by enabling the development of predictive models based on data-driven strategies. However, the lack of interpretability and transparency in these models limits their trustworthiness and applicability in real-world scenarios. Explainable Artificial Intelligence addresses these challenges by providing insights into the decision-making processes of machine learning models, enhancing their reliability and interpretability. Explainable strategies has been successfully applied in various biotechnology fields, including drug discovery, genomics, and medicine, yet its application in protein engineering remains underexplored. The incorporation of explainable strategies in protein engineering holds significant potential, as it can guide protein design by revealing how predictive models function, benefiting approaches such as machine learning-assisted directed evolution. This perspective work explores the principles and methodologies of explainable artificial intelligence, highlighting its relevance in biotechnology and its potential to enhance protein design. Additionally, three theoretical pipelines integrating predictive models with explainable strategies are proposed, focusing on their advantages, disadvantages, and technical requirements. Finally, the remaining challenges of explainable artificial intelligence in protein engineering and future directions for its development as a support tool for traditional protein engineering methodologies are discussed.
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Key words
Explainable artificial intelligence (XAI),Explainable machine learning (XML),Protein engineering,Protein design,Interpretable machine learning (IML)
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要点】:本文探讨了将解释性人工智能应用于蛋白质工程领域,以提高预测模型的可靠性和透明度,并提出了三个结合预测模型与解释性策略的理论管道。

方法】:作者综述了解释性人工智能的原理和方法,并讨论了其在生物技术领域的应用,特别是蛋白质工程。

实验】:本文未提供具体实验内容和数据集名称,主要侧重于理论探讨和未来发展方向。